Literature DB >> 26545160

The Search for Candidate Relevant Subsets of Variables in Complex Systems.

M Villani1, A Roli2, A Filisetti3, M Fiorucci4, I Poli4, R Serra1.   

Abstract

We describe a method to identify relevant subsets of variables, useful to understand the organization of a dynamical system. The variables belonging to a relevant subset should have a strong integration with the other variables of the same relevant subset, and a much weaker interaction with the other system variables. On this basis, extending previous work on neural networks, an information-theoretic measure, the dynamical cluster index, is introduced in order to identify good candidate relevant subsets. The method does not require any previous knowledge of the relationships among the system variables, but relies on observations of their values over time. We show its usefulness in several application domains, including: (i) random Boolean networks, where the whole network is made of different subnetworks with different topological relationships (independent or interacting subnetworks); (ii) leader-follower dynamics, subject to noise and fluctuations; (iii) catalytic reaction networks in a flow reactor; (iv) the MAPK signaling pathway in eukaryotes. The validity of the method has been tested in cases where the data are generated by a known dynamical model and the dynamical cluster index is applied in order to uncover significant aspects of its organization; however, it is important that it can also be applied to time series coming from field data without any reference to a model. Given that it is based on relative frequencies of sets of values, the method could be applied also to cases where the data are not ordered in time. Several indications to improve the scope and effectiveness of the dynamical cluster index to analyze the organization of complex systems are finally given.

Keywords:  Boolean networks; Information theory; MAPK; catalytic reactions; dynamical cluster index; dynamical system; information integration; mutual information

Year:  2015        PMID: 26545160     DOI: 10.1162/ARTL_a_00184

Source DB:  PubMed          Journal:  Artif Life        ISSN: 1064-5462            Impact factor:   0.667


  2 in total

1.  Asymptotic Information-Theoretic Detection of Dynamical Organization in Complex Systems.

Authors:  Gianluca D'Addese; Laura Sani; Luca La Rocca; Roberto Serra; Marco Villani
Journal:  Entropy (Basel)       Date:  2021-03-27       Impact factor: 2.524

2.  Candidate germline polymorphisms of genes belonging to the pathways of four drugs used in osteosarcoma standard chemotherapy associated with risk, survival and toxicity in non-metastatic high-grade osteosarcoma.

Authors:  Claudia M Hattinger; Paola Biason; Erika Iacoboni; Sara Gagno; Marilù Fanelli; Elisa Tavanti; Serena Vella; Stefano Ferrari; Andrea Roli; Rossana Roncato; Luciana Giodini; Katia Scotlandi; Piero Picci; Giuseppe Toffoli; Massimo Serra
Journal:  Oncotarget       Date:  2016-09-20
  2 in total

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